1 #include <../src/tao/bound/impls/bnk/bnk.h> 2 #include <petscksp.h> 3 4 /* 5 Implements Newton's Method with a line search approach for 6 solving bound constrained minimization problems. 7 8 ------------------------------------------------------------ 9 10 x_0 = VecMedian(x_0) 11 f_0, g_0 = TaoComputeObjectiveAndGradient(x_0) 12 pg_0 = project(g_0) 13 check convergence at pg_0 14 needH = TaoBNKInitialize(default:BNK_INIT_DIRECTION) 15 niter = 0 16 step_accepted = true 17 18 while niter < max_it 19 niter += 1 20 21 if needH 22 If max_cg_steps > 0 23 x_k, g_k, pg_k = TaoSolve(BNCG) 24 end 25 26 H_k = TaoComputeHessian(x_k) 27 if pc_type == BNK_PC_BFGS 28 add correction to BFGS approx 29 if scale_type == BNK_SCALE_AHESS 30 D = VecMedian(1e-6, abs(diag(H_k)), 1e6) 31 scale BFGS with VecReciprocal(D) 32 end 33 end 34 needH = False 35 end 36 37 if pc_type = BNK_PC_BFGS 38 B_k = BFGS 39 else 40 B_k = VecMedian(1e-6, abs(diag(H_k)), 1e6) 41 B_k = VecReciprocal(B_k) 42 end 43 w = x_k - VecMedian(x_k - 0.001*B_k*g_k) 44 eps = min(eps, norm2(w)) 45 determine the active and inactive index sets such that 46 L = {i : (x_k)_i <= l_i + eps && (g_k)_i > 0} 47 U = {i : (x_k)_i >= u_i - eps && (g_k)_i < 0} 48 F = {i : l_i = (x_k)_i = u_i} 49 A = {L + U + F} 50 IA = {i : i not in A} 51 52 generate the reduced system Hr_k dr_k = -gr_k for variables in IA 53 if p > 0 54 Hr_k += p* 55 end 56 if pc_type == BNK_PC_BFGS && scale_type == BNK_SCALE_PHESS 57 D = VecMedian(1e-6, abs(diag(Hr_k)), 1e6) 58 scale BFGS with VecReciprocal(D) 59 end 60 solve Hr_k dr_k = -gr_k 61 set d_k to (l - x) for variables in L, (u - x) for variables in U, and 0 for variables in F 62 63 if dot(d_k, pg_k)) >= 0 || norm(d_k) == NaN || norm(d_k) == Inf 64 dr_k = -BFGS*gr_k for variables in I 65 if dot(d_k, pg_k)) >= 0 || norm(d_k) == NaN || norm(d_k) == Inf 66 reset the BFGS preconditioner 67 calculate scale delta and apply it to BFGS 68 dr_k = -BFGS*gr_k for variables in I 69 if dot(d_k, pg_k)) >= 0 || norm(d_k) == NaN || norm(d_k) == Inf 70 dr_k = -gr_k for variables in I 71 end 72 end 73 end 74 75 x_{k+1}, f_{k+1}, g_{k+1}, ls_failed = TaoBNKPerformLineSearch() 76 if ls_failed 77 f_{k+1} = f_k 78 x_{k+1} = x_k 79 g_{k+1} = g_k 80 pg_{k+1} = pg_k 81 terminate 82 else 83 pg_{k+1} = project(g_{k+1}) 84 count the accepted step type (Newton, BFGS, scaled grad or grad) 85 end 86 87 check convergence at pg_{k+1} 88 end 89 */ 90 91 PetscErrorCode TaoSolve_BNLS(Tao tao) 92 { 93 PetscErrorCode ierr; 94 TAO_BNK *bnk = (TAO_BNK *)tao->data; 95 KSPConvergedReason ksp_reason; 96 TaoLineSearchConvergedReason ls_reason; 97 98 PetscReal steplen = 1.0, resnorm; 99 PetscBool cgTerminate, needH = PETSC_TRUE, stepAccepted, shift = PETSC_TRUE; 100 PetscInt stepType; 101 102 PetscFunctionBegin; 103 /* Initialize the preconditioner, KSP solver and trust radius/line search */ 104 tao->reason = TAO_CONTINUE_ITERATING; 105 ierr = TaoBNKInitialize(tao, bnk->init_type, &needH);CHKERRQ(ierr); 106 if (tao->reason != TAO_CONTINUE_ITERATING) PetscFunctionReturn(0); 107 108 /* Have not converged; continue with Newton method */ 109 while (tao->reason == TAO_CONTINUE_ITERATING) { 110 ++tao->niter; 111 112 if (needH && bnk->inactive_idx) { 113 /* Take BNCG steps (if enabled) to trade-off Hessian evaluations for more gradient evaluations */ 114 ierr = TaoBNKTakeCGSteps(tao, &cgTerminate);CHKERRQ(ierr); 115 if (cgTerminate) { 116 tao->reason = bnk->bncg->reason; 117 PetscFunctionReturn(0); 118 } 119 /* Compute the hessian and update the BFGS preconditioner at the new iterate */ 120 ierr = (*bnk->computehessian)(tao);CHKERRQ(ierr); 121 needH = PETSC_FALSE; 122 } 123 124 /* Use the common BNK kernel to compute the safeguarded Newton step (for inactive variables only) */ 125 ierr = (*bnk->computestep)(tao, shift, &ksp_reason, &stepType);CHKERRQ(ierr); 126 ierr = TaoBNKSafeguardStep(tao, ksp_reason, &stepType);CHKERRQ(ierr); 127 128 /* Store current solution before it changes */ 129 bnk->fold = bnk->f; 130 ierr = VecCopy(tao->solution, bnk->Xold);CHKERRQ(ierr); 131 ierr = VecCopy(tao->gradient, bnk->Gold);CHKERRQ(ierr); 132 ierr = VecCopy(bnk->unprojected_gradient, bnk->unprojected_gradient_old);CHKERRQ(ierr); 133 134 /* Trigger the line search */ 135 ierr = TaoBNKPerformLineSearch(tao, &stepType, &steplen, &ls_reason);CHKERRQ(ierr); 136 137 if (ls_reason != TAOLINESEARCH_SUCCESS && ls_reason != TAOLINESEARCH_SUCCESS_USER) { 138 /* Failed to find an improving point */ 139 needH = PETSC_FALSE; 140 bnk->f = bnk->fold; 141 ierr = VecCopy(bnk->Xold, tao->solution);CHKERRQ(ierr); 142 ierr = VecCopy(bnk->Gold, tao->gradient);CHKERRQ(ierr); 143 ierr = VecCopy(bnk->unprojected_gradient_old, bnk->unprojected_gradient);CHKERRQ(ierr); 144 steplen = 0.0; 145 tao->reason = TAO_DIVERGED_LS_FAILURE; 146 } else { 147 /* new iterate so we need to recompute the Hessian */ 148 needH = PETSC_TRUE; 149 /* compute the projected gradient */ 150 ierr = TaoBNKEstimateActiveSet(tao, bnk->as_type);CHKERRQ(ierr); 151 ierr = VecCopy(bnk->unprojected_gradient, tao->gradient);CHKERRQ(ierr); 152 ierr = VecISSet(tao->gradient, bnk->active_idx, 0.0);CHKERRQ(ierr); 153 ierr = TaoGradientNorm(tao, tao->gradient, NORM_2, &bnk->gnorm);CHKERRQ(ierr); 154 /* update the trust radius based on the step length */ 155 ierr = TaoBNKUpdateTrustRadius(tao, 0.0, 0.0, BNK_UPDATE_STEP, stepType, &stepAccepted);CHKERRQ(ierr); 156 /* count the accepted step type */ 157 ierr = TaoBNKAddStepCounts(tao, stepType);CHKERRQ(ierr); 158 /* active BNCG recycling for next iteration */ 159 ierr = TaoBNCGSetRecycleFlag(bnk->bncg, PETSC_TRUE);CHKERRQ(ierr); 160 } 161 162 /* Check for termination */ 163 ierr = VecFischer(tao->solution, bnk->unprojected_gradient, tao->XL, tao->XU, bnk->W);CHKERRQ(ierr); 164 ierr = VecNorm(bnk->W, NORM_2, &resnorm);CHKERRQ(ierr); 165 if (PetscIsInfOrNanReal(resnorm)) SETERRQ(PETSC_COMM_SELF,1, "User provided compute function generated Inf or NaN"); 166 ierr = TaoLogConvergenceHistory(tao, bnk->f, resnorm, 0.0, tao->ksp_its);CHKERRQ(ierr); 167 ierr = TaoMonitor(tao, tao->niter, bnk->f, resnorm, 0.0, steplen);CHKERRQ(ierr); 168 ierr = (*tao->ops->convergencetest)(tao, tao->cnvP);CHKERRQ(ierr); 169 } 170 PetscFunctionReturn(0); 171 } 172 173 /*------------------------------------------------------------*/ 174 175 PETSC_EXTERN PetscErrorCode TaoCreate_BNLS(Tao tao) 176 { 177 TAO_BNK *bnk; 178 PetscErrorCode ierr; 179 180 PetscFunctionBegin; 181 ierr = TaoCreate_BNK(tao);CHKERRQ(ierr); 182 tao->ops->solve = TaoSolve_BNLS; 183 184 bnk = (TAO_BNK *)tao->data; 185 bnk->init_type = BNK_INIT_DIRECTION; 186 bnk->update_type = BNK_UPDATE_STEP; /* trust region updates based on line search step length */ 187 PetscFunctionReturn(0); 188 } 189